{
  "nbformat": 4,
  "nbformat_minor": 0,
  "metadata": {
    "colab": {
      "name": "r_GOOG.ipynb",
      "provenance": []
    },
    "kernelspec": {
      "name": "python3",
      "display_name": "Python 3"
    }
  },
  "cells": [
    {
      "cell_type": "code",
      "metadata": {
        "id": "hBR-Qgr12SAX",
        "colab_type": "code",
        "colab": {}
      },
      "source": [
        "#ci permette di importare qualsiasi modulo\n",
        "import sys\n",
        "sys.path.append('/content/drive/My Drive/Colab Notebooks/TensorFlow 2.0/modules')\n",
        "import pandas as pd\n",
        "import tf_dataset_extractor as e\n",
        "#import grapher_v1_1 as g\n",
        "#import LSTM_creator_v1_0 as l\n",
        "v = e.v\n",
        "g = e.g\n",
        "l = e.l"
      ],
      "execution_count": 0,
      "outputs": []
    },
    {
      "cell_type": "code",
      "metadata": {
        "id": "8KyEEBxM4nNj",
        "colab_type": "code",
        "outputId": "bf5cea8a-fa12-4d4f-efd4-645240e71314",
        "colab": {
          "base_uri": "https://localhost:8080/",
          "height": 34
        }
      },
      "source": [
        "from google.colab import drive\n",
        "drive.mount('/content/drive')"
      ],
      "execution_count": 15,
      "outputs": [
        {
          "output_type": "stream",
          "text": [
            "Drive already mounted at /content/drive; to attempt to forcibly remount, call drive.mount(\"/content/drive\", force_remount=True).\n"
          ],
          "name": "stdout"
        }
      ]
    },
    {
      "cell_type": "code",
      "metadata": {
        "id": "_DjZxUag2tUE",
        "colab_type": "code",
        "colab": {}
      },
      "source": [
        "# load dataset\n",
        "v.upload.online_csv('/content/drive/My Drive/Colab Notebooks/TensorFlow 2.0/csv/GOOG.csv')\n",
        "e.K = v.upload.make_backup()"
      ],
      "execution_count": 0,
      "outputs": []
    },
    {
      "cell_type": "code",
      "metadata": {
        "id": "lFspoBT82vec",
        "colab_type": "code",
        "outputId": "c08e160d-6d2b-4820-d04c-179a057b7d3f",
        "colab": {
          "base_uri": "https://localhost:8080/",
          "height": 34
        }
      },
      "source": [
        "#original copy without preprocessing\n",
        "v.upload.retrieve_backup(e.K)\n",
        "\n",
        "#dropping extra columns\n",
        "e.X = e.X.drop(['High', 'Low', 'Close', 'Adj Close', 'Volume'], axis=1)\n",
        "\n",
        "#preprocessing\n",
        "index = e.X.pop('Date')\n",
        "scaler, e.X = v.partition.scale('all_df', scaler='MinMaxScaler', df=e.X, to_float=True, return_df=True)\n",
        "e.X = e.X.set_index(index)\n",
        "e.X = l.preprocessing.series_to_supervised(e.X, 3, 1)\n",
        "\n",
        "#X, y\n",
        "v.extract.labels(['var1(t)'])\n",
        "\n",
        "#train, test\n",
        "X_train_, X_test_ = l.preprocessing.split(0.1, e.X)\n",
        "y_train_, y_test_ = l.preprocessing.split(0.1, e.y)\n",
        "e.X_ = e.X.copy()\n",
        "e.y_ = e.y.copy()\n",
        "print(X_train_.shape, X_test_.shape, y_train_.shape, y_test_.shape)"
      ],
      "execution_count": 17,
      "outputs": [
        {
          "output_type": "stream",
          "text": [
            "(225, 3) (25, 3) (225, 1) (25, 1)\n"
          ],
          "name": "stdout"
        }
      ]
    },
    {
      "cell_type": "code",
      "metadata": {
        "id": "YFKrASL3RqmO",
        "colab_type": "code",
        "colab": {
          "base_uri": "https://localhost:8080/",
          "height": 654
        },
        "outputId": "fc3a30c4-8fcd-41f2-b21b-e23ddf58675b"
      },
      "source": [
        "import matplotlib.pyplot as plt\n",
        "\n",
        "fig=plt.figure(figsize=(20, 10), dpi= 80)\n",
        "fig=plt.plot(e.y_)"
      ],
      "execution_count": 19,
      "outputs": [
        {
          "output_type": "display_data",
          "data": {
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\n",
            "text/plain": [
              "<Figure size 1600x800 with 1 Axes>"
            ]
          },
          "metadata": {
            "tags": [],
            "needs_background": "light"
          }
        }
      ]
    },
    {
      "cell_type": "code",
      "metadata": {
        "id": "_akVJ0aP3FKb",
        "colab_type": "code",
        "outputId": "9c96fd85-abf6-437a-df53-5a9463e3c594",
        "colab": {
          "base_uri": "https://localhost:8080/",
          "height": 34
        }
      },
      "source": [
        "#normal preprocessing\n",
        "v.upload.retrieve_backup(e.K)\n",
        "\n",
        "#dropping extra columns\n",
        "e.X = e.X.drop(['High', 'Low', 'Close', 'Adj Close', 'Volume'], axis=1)\n",
        "\n",
        "#preprocessing\n",
        "index = e.X.pop('Date')\n",
        "scaler, e.X = v.partition.scale('all_df', scaler='MinMaxScaler', df=e.X, to_float=True, return_df=True)\n",
        "e.X = e.X.set_index(index)\n",
        "l.preprocessing.transform_to_stationary()\n",
        "e.X = l.preprocessing.series_to_supervised(e.X, 3, 1, drop_col=False)\n",
        "\n",
        "#X, y\n",
        "v.extract.labels(['var1(t)'])\n",
        "\n",
        "#train, test\n",
        "X_train, X_test = l.preprocessing.split(0.1, e.X)\n",
        "y_train, y_test = l.preprocessing.split(0.1, e.y) #sembra non servire a nulla\n",
        "print(X_train.shape, X_test.shape, y_train.shape, y_test.shape)"
      ],
      "execution_count": 20,
      "outputs": [
        {
          "output_type": "stream",
          "text": [
            "(225, 3) (24, 3) (225, 1) (24, 1)\n"
          ],
          "name": "stdout"
        }
      ]
    },
    {
      "cell_type": "code",
      "metadata": {
        "id": "Aaw6hryiRUXs",
        "colab_type": "code",
        "colab": {
          "base_uri": "https://localhost:8080/",
          "height": 658
        },
        "outputId": "b27e8a08-bcb9-4aee-c3c7-397aa3e7382b"
      },
      "source": [
        "import matplotlib.pyplot as plt\n",
        "\n",
        "fig=plt.figure(figsize=(20, 10), dpi= 80)\n",
        "fig=plt.plot(e.y)"
      ],
      "execution_count": 21,
      "outputs": [
        {
          "output_type": "display_data",
          "data": {
            "image/png": 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\n",
            "text/plain": [
              "<Figure size 1600x800 with 1 Axes>"
            ]
          },
          "metadata": {
            "tags": [],
            "needs_background": "light"
          }
        }
      ]
    },
    {
      "cell_type": "code",
      "metadata": {
        "id": "U_XCv3zxitjd",
        "colab_type": "code",
        "colab": {
          "base_uri": "https://localhost:8080/",
          "height": 658
        },
        "outputId": "e32cf54b-9a50-4d92-ec59-9cd016e7b422"
      },
      "source": [
        "import matplotlib.pyplot as plt\n",
        "\n",
        "fig=plt.figure(figsize=(20, 10), dpi= 80)\n",
        "fig=plt.plot(e.X)"
      ],
      "execution_count": 22,
      "outputs": [
        {
          "output_type": "display_data",
          "data": {
            "image/png": 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\n",
            "text/plain": [
              "<Figure size 1600x800 with 1 Axes>"
            ]
          },
          "metadata": {
            "tags": [],
            "needs_background": "light"
          }
        }
      ]
    },
    {
      "cell_type": "code",
      "metadata": {
        "id": "6GIW9M543kDC",
        "colab_type": "code",
        "outputId": "07aa4dbe-670b-4cde-d1d0-2fd2bbd20550",
        "colab": {
          "base_uri": "https://localhost:8080/",
          "height": 34
        }
      },
      "source": [
        "#reshape [samples, n_input_timesteps, n_features]\n",
        "X_train = X_train.reshape((225, 3, 1))\n",
        "y_train = y_train.reshape((225, 1, 1))\n",
        "print(X_train.shape, y_train.shape)\n",
        "#every sample has dimensions [1, 3, 1]"
      ],
      "execution_count": 24,
      "outputs": [
        {
          "output_type": "stream",
          "text": [
            "(225, 3, 1) (225, 1, 1)\n"
          ],
          "name": "stdout"
        }
      ]
    },
    {
      "cell_type": "code",
      "metadata": {
        "id": "_S8YewSH3qHO",
        "colab_type": "code",
        "outputId": "fbd1a925-d4e6-4d50-c61f-0a7477fadaff",
        "colab": {
          "base_uri": "https://localhost:8080/",
          "height": 1000
        }
      },
      "source": [
        "#LSTM\n",
        "%tensorflow_version 2.x\n",
        "import tensorflow as tf\n",
        "from tensorflow.keras import Sequential\n",
        "from tensorflow.keras import layers\n",
        "from tensorflow.keras.layers import Dense\n",
        "from tensorflow.keras.layers import LSTM\n",
        "\n",
        "model = Sequential()\n",
        "model.add(LSTM(50, batch_input_shape=(1, 3, 1), stateful=True)) #dimensions of every single sample\n",
        "model.add(Dense(1))\n",
        "model.compile(loss='mean_squared_error', optimizer='adam')\n",
        "\n",
        "model.fit(X_train, y_train, epochs=3000, batch_size=1, verbose=2, shuffle=False)\n",
        "model.reset_states()\n",
        "\n",
        "X_test = X_test.reshape(24, 3, 1)\n",
        "y_test = y_test.reshape(24, 1, 1)\n",
        "print(X_test.shape, y_test.shape)"
      ],
      "execution_count": 25,
      "outputs": [
        {
          "output_type": "stream",
          "text": [
            "\u001b[1;30;43mStreaming output truncated to the last 5000 lines.\u001b[0m\n",
            "Epoch 500/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 501/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 502/3000\n",
            "225/225 - 0s - loss: 0.0011\n",
            "Epoch 503/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 504/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 505/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 506/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 507/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 508/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 509/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 510/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 511/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 512/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 513/3000\n",
            "225/225 - 0s - loss: 0.0013\n",
            "Epoch 514/3000\n",
            "225/225 - 0s - loss: 0.0013\n",
            "Epoch 515/3000\n",
            "225/225 - 0s - loss: 0.0013\n",
            "Epoch 516/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 517/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 518/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 519/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 520/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 521/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 522/3000\n",
            "225/225 - 0s - loss: 0.0011\n",
            "Epoch 523/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 524/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 525/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 526/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 527/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 528/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 529/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 530/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 531/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 532/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 533/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 534/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 535/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 536/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 537/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 538/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 539/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 540/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 541/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 542/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 543/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 544/3000\n",
            "225/225 - 0s - loss: 0.0013\n",
            "Epoch 545/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 546/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 547/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 548/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 549/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 550/3000\n",
            "225/225 - 0s - loss: 0.0011\n",
            "Epoch 551/3000\n",
            "225/225 - 0s - loss: 0.0011\n",
            "Epoch 552/3000\n",
            "225/225 - 0s - loss: 0.0011\n",
            "Epoch 553/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 554/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 555/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 556/3000\n",
            "225/225 - 0s - loss: 0.0013\n",
            "Epoch 557/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 558/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 559/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 560/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 561/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 562/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 563/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 564/3000\n",
            "225/225 - 0s - loss: 0.0013\n",
            "Epoch 565/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 566/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 567/3000\n",
            "225/225 - 0s - loss: 0.0012\n",
            "Epoch 568/3000\n",
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            "Epoch 569/3000\n",
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            "Epoch 2927/3000\n",
            "225/225 - 0s - loss: 4.9958e-04\n",
            "Epoch 2928/3000\n",
            "225/225 - 0s - loss: 7.6821e-04\n",
            "Epoch 2929/3000\n",
            "225/225 - 0s - loss: 5.8492e-04\n",
            "Epoch 2930/3000\n",
            "225/225 - 0s - loss: 4.1831e-04\n",
            "Epoch 2931/3000\n",
            "225/225 - 0s - loss: 3.7726e-04\n",
            "Epoch 2932/3000\n",
            "225/225 - 0s - loss: 3.7812e-04\n",
            "Epoch 2933/3000\n",
            "225/225 - 0s - loss: 3.3653e-04\n",
            "Epoch 2934/3000\n",
            "225/225 - 0s - loss: 3.4686e-04\n",
            "Epoch 2935/3000\n",
            "225/225 - 0s - loss: 4.9545e-04\n",
            "Epoch 2936/3000\n",
            "225/225 - 0s - loss: 5.1043e-04\n",
            "Epoch 2937/3000\n",
            "225/225 - 0s - loss: 4.0315e-04\n",
            "Epoch 2938/3000\n",
            "225/225 - 0s - loss: 4.5504e-04\n",
            "Epoch 2939/3000\n",
            "225/225 - 0s - loss: 7.1705e-04\n",
            "Epoch 2940/3000\n",
            "225/225 - 0s - loss: 4.2881e-04\n",
            "Epoch 2941/3000\n",
            "225/225 - 0s - loss: 3.0058e-04\n",
            "Epoch 2942/3000\n",
            "225/225 - 0s - loss: 2.8969e-04\n",
            "Epoch 2943/3000\n",
            "225/225 - 0s - loss: 2.9047e-04\n",
            "Epoch 2944/3000\n",
            "225/225 - 0s - loss: 2.5360e-04\n",
            "Epoch 2945/3000\n",
            "225/225 - 0s - loss: 3.6918e-04\n",
            "Epoch 2946/3000\n",
            "225/225 - 0s - loss: 3.1539e-04\n",
            "Epoch 2947/3000\n",
            "225/225 - 0s - loss: 3.8507e-04\n",
            "Epoch 2948/3000\n",
            "225/225 - 0s - loss: 7.6770e-04\n",
            "Epoch 2949/3000\n",
            "225/225 - 0s - loss: 5.1972e-04\n",
            "Epoch 2950/3000\n",
            "225/225 - 0s - loss: 6.3038e-04\n",
            "Epoch 2951/3000\n",
            "225/225 - 0s - loss: 0.0010\n",
            "Epoch 2952/3000\n",
            "225/225 - 0s - loss: 5.7870e-04\n",
            "Epoch 2953/3000\n",
            "225/225 - 0s - loss: 4.1452e-04\n",
            "Epoch 2954/3000\n",
            "225/225 - 0s - loss: 3.9611e-04\n",
            "Epoch 2955/3000\n",
            "225/225 - 0s - loss: 4.9793e-04\n",
            "Epoch 2956/3000\n",
            "225/225 - 0s - loss: 4.8011e-04\n",
            "Epoch 2957/3000\n",
            "225/225 - 0s - loss: 4.0704e-04\n",
            "Epoch 2958/3000\n",
            "225/225 - 0s - loss: 4.0217e-04\n",
            "Epoch 2959/3000\n",
            "225/225 - 0s - loss: 4.5398e-04\n",
            "Epoch 2960/3000\n",
            "225/225 - 0s - loss: 4.1578e-04\n",
            "Epoch 2961/3000\n",
            "225/225 - 0s - loss: 4.5308e-04\n",
            "Epoch 2962/3000\n",
            "225/225 - 0s - loss: 4.7553e-04\n",
            "Epoch 2963/3000\n",
            "225/225 - 0s - loss: 4.0400e-04\n",
            "Epoch 2964/3000\n",
            "225/225 - 0s - loss: 3.7633e-04\n",
            "Epoch 2965/3000\n",
            "225/225 - 0s - loss: 3.8728e-04\n",
            "Epoch 2966/3000\n",
            "225/225 - 0s - loss: 3.4891e-04\n",
            "Epoch 2967/3000\n",
            "225/225 - 0s - loss: 4.1612e-04\n",
            "Epoch 2968/3000\n",
            "225/225 - 0s - loss: 3.5305e-04\n",
            "Epoch 2969/3000\n",
            "225/225 - 0s - loss: 3.2296e-04\n",
            "Epoch 2970/3000\n",
            "225/225 - 0s - loss: 3.0068e-04\n",
            "Epoch 2971/3000\n",
            "225/225 - 0s - loss: 6.8629e-04\n",
            "Epoch 2972/3000\n",
            "225/225 - 0s - loss: 3.1760e-04\n",
            "Epoch 2973/3000\n",
            "225/225 - 0s - loss: 3.8915e-04\n",
            "Epoch 2974/3000\n",
            "225/225 - 0s - loss: 3.2149e-04\n",
            "Epoch 2975/3000\n",
            "225/225 - 0s - loss: 5.1433e-04\n",
            "Epoch 2976/3000\n",
            "225/225 - 0s - loss: 3.7047e-04\n",
            "Epoch 2977/3000\n",
            "225/225 - 0s - loss: 7.1617e-04\n",
            "Epoch 2978/3000\n",
            "225/225 - 0s - loss: 2.9993e-04\n",
            "Epoch 2979/3000\n",
            "225/225 - 0s - loss: 3.5407e-04\n",
            "Epoch 2980/3000\n",
            "225/225 - 0s - loss: 2.3787e-04\n",
            "Epoch 2981/3000\n",
            "225/225 - 0s - loss: 3.3231e-04\n",
            "Epoch 2982/3000\n",
            "225/225 - 0s - loss: 5.3640e-04\n",
            "Epoch 2983/3000\n",
            "225/225 - 0s - loss: 7.0209e-04\n",
            "Epoch 2984/3000\n",
            "225/225 - 0s - loss: 6.1683e-04\n",
            "Epoch 2985/3000\n",
            "225/225 - 0s - loss: 7.3834e-04\n",
            "Epoch 2986/3000\n",
            "225/225 - 0s - loss: 3.6784e-04\n",
            "Epoch 2987/3000\n",
            "225/225 - 0s - loss: 4.4647e-04\n",
            "Epoch 2988/3000\n",
            "225/225 - 0s - loss: 3.6327e-04\n",
            "Epoch 2989/3000\n",
            "225/225 - 0s - loss: 5.0494e-04\n",
            "Epoch 2990/3000\n",
            "225/225 - 0s - loss: 5.4823e-04\n",
            "Epoch 2991/3000\n",
            "225/225 - 0s - loss: 3.6584e-04\n",
            "Epoch 2992/3000\n",
            "225/225 - 0s - loss: 3.5180e-04\n",
            "Epoch 2993/3000\n",
            "225/225 - 0s - loss: 4.1809e-04\n",
            "Epoch 2994/3000\n",
            "225/225 - 0s - loss: 4.6017e-04\n",
            "Epoch 2995/3000\n",
            "225/225 - 0s - loss: 8.9060e-04\n",
            "Epoch 2996/3000\n",
            "225/225 - 0s - loss: 6.7036e-04\n",
            "Epoch 2997/3000\n",
            "225/225 - 0s - loss: 5.6310e-04\n",
            "Epoch 2998/3000\n",
            "225/225 - 0s - loss: 4.7251e-04\n",
            "Epoch 2999/3000\n",
            "225/225 - 0s - loss: 4.4516e-04\n",
            "Epoch 3000/3000\n",
            "225/225 - 0s - loss: 4.3849e-04\n",
            "(24, 3, 1) (24, 1, 1)\n"
          ],
          "name": "stdout"
        }
      ]
    },
    {
      "cell_type": "code",
      "metadata": {
        "id": "8H9Sg6wp3r_6",
        "colab_type": "code",
        "outputId": "6bb8956d-e429-4562-cb27-24deed2101d8",
        "colab": {
          "base_uri": "https://localhost:8080/",
          "height": 442
        }
      },
      "source": [
        "#make a one-step forecast\n",
        "yhat = model.predict(X_test, verbose=2, batch_size=1)\n",
        "#without batch_size the model only accepts one input at a time\n",
        "yhat"
      ],
      "execution_count": 26,
      "outputs": [
        {
          "output_type": "stream",
          "text": [
            "24/24 - 0s\n"
          ],
          "name": "stdout"
        },
        {
          "output_type": "execute_result",
          "data": {
            "text/plain": [
              "array([[-0.04696345],\n",
              "       [ 0.03206931],\n",
              "       [-0.18979315],\n",
              "       [ 0.00682331],\n",
              "       [ 0.02341432],\n",
              "       [-0.16108331],\n",
              "       [-0.00049329],\n",
              "       [-0.145303  ],\n",
              "       [-0.15979873],\n",
              "       [-0.00961446],\n",
              "       [ 0.02861861],\n",
              "       [-0.05857746],\n",
              "       [-0.01472849],\n",
              "       [ 0.02434599],\n",
              "       [-0.05536114],\n",
              "       [ 0.00922018],\n",
              "       [ 0.03102434],\n",
              "       [-0.01390202],\n",
              "       [ 0.00944739],\n",
              "       [ 0.00411285],\n",
              "       [ 0.03038205],\n",
              "       [ 0.00657554],\n",
              "       [ 0.04758127],\n",
              "       [ 0.03749657]], dtype=float32)"
            ]
          },
          "metadata": {
            "tags": []
          },
          "execution_count": 26
        }
      ]
    },
    {
      "cell_type": "code",
      "metadata": {
        "id": "JwdjMyLq3tjr",
        "colab_type": "code",
        "outputId": "e2fcb8ac-8065-4ddb-d75b-317105e82b09",
        "colab": {
          "base_uri": "https://localhost:8080/",
          "height": 442
        }
      },
      "source": [
        "#invert preprocessing on predicted data\n",
        "#remove stationary\n",
        "y_test = y_test.reshape(24, 1)\n",
        "var1 = y_test_    #original values\n",
        "var2 = yhat       #gaps\n",
        "var3 = list()     #\n",
        "\n",
        "#var1 = var1.values\n",
        "#var2 = var2.values\n",
        "\n",
        "var3.append(var1[0])\n",
        "for i in range(0, len(var2)):\n",
        "  values = var1[i] + var2[i]\n",
        "  var3.append(values)\n",
        "var3\n",
        "\n",
        "#inverse scaling\n",
        "predicted = scaler.inverse_transform(var3)\n",
        "predicted"
      ],
      "execution_count": 28,
      "outputs": [
        {
          "output_type": "execute_result",
          "data": {
            "text/plain": [
              "array([[1350.19995824],\n",
              "       [1327.55559288],\n",
              "       [1292.52292183],\n",
              "       [1113.78744665],\n",
              "       [1263.29001053],\n",
              "       [1260.98966678],\n",
              "       [1048.33041522],\n",
              "       [1178.76211317],\n",
              "       [1025.93923827],\n",
              "       [1016.05989685],\n",
              "       [1051.8741647 ],\n",
              "       [1106.84906114],\n",
              "       [1107.47572023],\n",
              "       [1054.21830217],\n",
              "       [1115.50891084],\n",
              "       [1099.7765301 ],\n",
              "       [1116.24576462],\n",
              "       [1140.62901753],\n",
              "       [1118.33690587],\n",
              "       [1151.85535375],\n",
              "       [1123.98306701],\n",
              "       [1112.90936663],\n",
              "       [1122.18549325],\n",
              "       [1160.94223751],\n",
              "       [1239.0796836 ]])"
            ]
          },
          "metadata": {
            "tags": []
          },
          "execution_count": 28
        }
      ]
    },
    {
      "cell_type": "code",
      "metadata": {
        "id": "U5W6gQs23vi1",
        "colab_type": "code",
        "outputId": "c2cda505-b59b-41b5-b332-a4b680bbd920",
        "colab": {
          "base_uri": "https://localhost:8080/",
          "height": 442
        }
      },
      "source": [
        "#invert preprocessing on expected data\n",
        "#inverse scaling\n",
        "expected = scaler.inverse_transform(y_test_)\n",
        "expected"
      ],
      "execution_count": 29,
      "outputs": [
        {
          "output_type": "execute_result",
          "data": {
            "text/plain": [
              "array([[1350.2  ],\n",
              "       [1277.06 ],\n",
              "       [1205.3  ],\n",
              "       [1260.   ],\n",
              "       [1249.7  ],\n",
              "       [1126.   ],\n",
              "       [1179.   ],\n",
              "       [1096.   ],\n",
              "       [1093.11 ],\n",
              "       [1056.51 ],\n",
              "       [1093.05 ],\n",
              "       [1135.72 ],\n",
              "       [1061.32 ],\n",
              "       [1103.77 ],\n",
              "       [1126.47 ],\n",
              "       [1111.8  ],\n",
              "       [1125.67 ],\n",
              "       [1125.04 ],\n",
              "       [1147.3  ],\n",
              "       [1122.   ],\n",
              "       [1098.26 ],\n",
              "       [1119.015],\n",
              "       [1138.   ],\n",
              "       [1221.   ],\n",
              "       [1206.5  ]], dtype=float32)"
            ]
          },
          "metadata": {
            "tags": []
          },
          "execution_count": 29
        }
      ]
    },
    {
      "cell_type": "code",
      "metadata": {
        "id": "2qb2yeYK33xC",
        "colab_type": "code",
        "outputId": "bff1f241-5422-4030-9f97-681efae6b8c8",
        "colab": {
          "base_uri": "https://localhost:8080/",
          "height": 442
        }
      },
      "source": [
        "for i in range(len(y_test_)):\n",
        "  print('iteration=%d, Predicted=%f, Expected=%f' % (i+1, predicted[i], expected[i]))"
      ],
      "execution_count": 30,
      "outputs": [
        {
          "output_type": "stream",
          "text": [
            "iteration=1, Predicted=1350.199958, Expected=1350.199951\n",
            "iteration=2, Predicted=1327.555593, Expected=1277.060059\n",
            "iteration=3, Predicted=1292.522922, Expected=1205.300049\n",
            "iteration=4, Predicted=1113.787447, Expected=1260.000000\n",
            "iteration=5, Predicted=1263.290011, Expected=1249.699951\n",
            "iteration=6, Predicted=1260.989667, Expected=1126.000000\n",
            "iteration=7, Predicted=1048.330415, Expected=1179.000000\n",
            "iteration=8, Predicted=1178.762113, Expected=1096.000000\n",
            "iteration=9, Predicted=1025.939238, Expected=1093.109985\n",
            "iteration=10, Predicted=1016.059897, Expected=1056.510010\n",
            "iteration=11, Predicted=1051.874165, Expected=1093.050049\n",
            "iteration=12, Predicted=1106.849061, Expected=1135.719971\n",
            "iteration=13, Predicted=1107.475720, Expected=1061.319946\n",
            "iteration=14, Predicted=1054.218302, Expected=1103.770020\n",
            "iteration=15, Predicted=1115.508911, Expected=1126.469971\n",
            "iteration=16, Predicted=1099.776530, Expected=1111.800049\n",
            "iteration=17, Predicted=1116.245765, Expected=1125.670044\n",
            "iteration=18, Predicted=1140.629018, Expected=1125.040039\n",
            "iteration=19, Predicted=1118.336906, Expected=1147.300049\n",
            "iteration=20, Predicted=1151.855354, Expected=1122.000000\n",
            "iteration=21, Predicted=1123.983067, Expected=1098.260010\n",
            "iteration=22, Predicted=1112.909367, Expected=1119.015015\n",
            "iteration=23, Predicted=1122.185493, Expected=1138.000000\n",
            "iteration=24, Predicted=1160.942238, Expected=1221.000000\n",
            "iteration=25, Predicted=1239.079684, Expected=1206.500000\n"
          ],
          "name": "stdout"
        }
      ]
    },
    {
      "cell_type": "code",
      "metadata": {
        "id": "Bb8617TQ-Ov_",
        "colab_type": "code",
        "outputId": "5ccbffdd-6340-4b41-f5d3-a440aa82c81c",
        "colab": {
          "base_uri": "https://localhost:8080/",
          "height": 906
        }
      },
      "source": [
        "import matplotlib.pyplot as plt\n",
        "\n",
        "fig=plt.figure(figsize=(20, 10), dpi= 130)\n",
        "fig=plt.plot(expected)\n",
        "fig=plt.plot(predicted)"
      ],
      "execution_count": 34,
      "outputs": [
        {
          "output_type": "display_data",
          "data": {
            "image/png": 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            "text/plain": [
              "<Figure size 2600x1300 with 1 Axes>"
            ]
          },
          "metadata": {
            "tags": [],
            "needs_background": "light"
          }
        }
      ]
    },
    {
      "cell_type": "code",
      "metadata": {
        "id": "S8b_h2K--r7I",
        "colab_type": "code",
        "outputId": "afcd0c38-55e8-4996-b160-b65bd3ad59c5",
        "colab": {
          "base_uri": "https://localhost:8080/",
          "height": 34
        }
      },
      "source": [
        "# report performance\n",
        "from math import *\n",
        "from sklearn.metrics import mean_squared_error\n",
        "rmse = sqrt(mean_squared_error(expected, predicted))\n",
        "print('Test RMSE: %.3f' % rmse)\n",
        "# line plot of observed vs predicted"
      ],
      "execution_count": 13,
      "outputs": [
        {
          "output_type": "stream",
          "text": [
            "Test RMSE: 58.232\n"
          ],
          "name": "stdout"
        }
      ]
    }
  ]
}